Real-Time Minimization of Mechanical Specific Energy with Multivariable Extremum Seeking
Abstract
:1. Introduction
2. Safe and Efficient Drilling as an Optimization Problem
2.1. Drilling Model
- Phase I drilling, where the WOB is not adequate to force the cutters to fully engage the formation, resulting in inefficient drilling. It is postulated that this inefficiency is caused by the cutters having a blunt underside, a wear flat, which supports some of the WOB and is a source of friction that does not contribute to the excavation of rock. In phase I, drilling with higher WOB will increase the depth of cut, which translates to higher ROP. At the same time, the increased depth of cut will expose a larger area of the wear flats to contact with the formation, which in turn makes the wear flats carry more WOB. The WOB being translated partly to increased cutting action and partly as friction on the wear flats continues until a threshold WOB which marks the onset of the next drilling phase. An ideally sharp bit will in theory never drill in phase I, as it has no wear flats.
- Phase II drilling, which is characterized by efficient drilling with the bit acting incrementally as an ideally sharp bit. At the onset of phase II drilling the contact forces between the wear flat and the formation are fully engaged. Further increases in WOB value will result in the rock deforming beneath the cutters without any increase in the contact area between the wear flat and formation. An increase in WOB while in phase II will be transferred solely to increasing depth of cut and correspondingly increasing ROP at peak efficiency, up to a point where a drilling dysfunction starts diminishing the efficiency of the cutting action.
- Phase III drilling, where an increase in contact forces between the bit and formation results in less of the applied WOB being translated to cutting action, which leads to a reduction in depth of cut and less efficient drilling. The onset of phase III drilling is referred to as the founder point and is often considered the optimal conditions to drill at [12,31].
2.2. Drilling Dysfunctions and Constraints
- Foundering effects that reduce the efficiency of energy transferal between the bit and the formation, which causes inefficient drilling. They can be caused by vibrations such as stick-slip and whirl, as well as bit or bottomhole balling. These dysfunctions will result in ROP values that are lower than what would be seen with an efficient bit for a given WOB and RPM.
- Energy input limiters, which constrain the amount of energy that can be applied through the input parameters WOB and RPM when drilling. In the case when the input energy is constrained before the onset of foundering effects, the bit would still be able to drill more efficiently at higher values of WOB and/or RPM, but because of a system constraint these parameters cannot be increased. A multitude of input energy limiters have been reported in the literature, such as a maximal WOB or RPM determined by bit or bottom hole assembly (BHA) design, a maximal ROP dictated by hole cleaning or solids handling capacity on the surface, a maximal top drive torque rating or top-side vibrations [8,9,13].
2.3. Mechanical Specific Energy
3. Drilling Optimization with Extremum Seeking
3.1. The Extremum Seeking Algorithm
- The excitation signal, which varies the input variables around a base value to investigate the current drilling conditions.
- Gradient estimation, which quantifies how the process reacts to the excitation signal by estimating partial derivatives of the objective function with respect to the input variables.
- Adaptation, which adjusts the base values of the input variables with a magnitude and direction determined by the estimated gradients, to seek out drilling conditions that result in lower MSE values.
3.1.1. The Excitation Signal
3.1.2. Gradient Estimation
3.1.3. Adaptation
3.2. Algorithm Design Choices
3.3. Constraint Handling
3.3.1. Modified Objective Function
3.3.2. Predictive Constraint Handling
3.3.3. Reactive Constraint Handling
3.4. Practical Requirements and Algorithm Tuning
4. Simulation Results
4.1. Unconstrained Drilling Optimization
4.2. Constrained Drilling Optimization
4.3. Unconstrained Drilling with Formation Shifts
5. Discussion of Results
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
BHA | Bottom Hole Assembly |
ES | Extremum Seeking |
MSE | Mechanical Specific Energy |
NPT | Non-Productive Time |
PDC | Polycrystalline Diamond Compact |
PI | Proportional-Integral |
RPM | Revolutions Per Minute (drill string rotational rate) |
T | Torque |
WOB | Weight on Bit |
Appendix A. Period Selection for the Excitation Signals
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Parameter | Tuning Considerations |
---|---|
Excitation amplitude, A |
|
Excitation period, P |
|
Adaptation rate, γ |
|
k parameter |
|
Parameter | Fm. A Value | Fm. B Value | Units |
---|---|---|---|
Parameter | Value | Units |
---|---|---|
12 ¼ | Inches | |
2.5 | kg/s | |
200 | kg | |
0.001 | MPa/kg | |
0.002 | MPa/kg | |
120 | s | |
4 | s | |
0.02 | rpm/s | |
2 | rpm | |
0.05 | MPa/rpm | |
0.1 | MPa/rpm | |
60 | s | |
3 | s |
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Nystad, M.; Aadnøy, B.S.; Pavlov, A. Real-Time Minimization of Mechanical Specific Energy with Multivariable Extremum Seeking. Energies 2021, 14, 1298. https://doi.org/10.3390/en14051298
Nystad M, Aadnøy BS, Pavlov A. Real-Time Minimization of Mechanical Specific Energy with Multivariable Extremum Seeking. Energies. 2021; 14(5):1298. https://doi.org/10.3390/en14051298
Chicago/Turabian StyleNystad, Magnus, Bernt Sigve Aadnøy, and Alexey Pavlov. 2021. "Real-Time Minimization of Mechanical Specific Energy with Multivariable Extremum Seeking" Energies 14, no. 5: 1298. https://doi.org/10.3390/en14051298
APA StyleNystad, M., Aadnøy, B. S., & Pavlov, A. (2021). Real-Time Minimization of Mechanical Specific Energy with Multivariable Extremum Seeking. Energies, 14(5), 1298. https://doi.org/10.3390/en14051298